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Optimal design in average for inference in generalized linear models

机译:广义线性模型中用于推理的平均优化设计

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This paper considers the problem of optimal design for inference in Generalized Linear Models, when prior information about the parameters is available. The general theory of optimum design usually requires knowledge of the parameter values. These are usually unknown and optimal design can, therefore, not be used in practice. However, one way to circumvent this problem is through so-called "optimal design in average", or shortly, "ave optimal". The ave optimal design is chosen to minimize the expected value of some criterion function over a prior distribution. We focus our interest on the ave D_A-optimality, including ave D- and ave c-optimality and show the appropriate equivalence theorems for these optimality criterions, which give necessary conditions for an optimal design. Ave optimal designs are of interest when e.g. a factorial experiment with a binary or a Poisson response in to be conducted. The results are applied to factorial experiments, including a control group experiment and a 2 * 2 experiment.
机译:当关于参数的先验信息可用时,本文考虑了广义线性模型中的推理优化设计问题。最佳设计的一般理论通常需要了解参数值。这些通常是未知的,因此,最佳设计无法在实践中使用。但是,解决此问题的一种方法是通过所谓的“平均最佳设计”,或者简称为“最佳设计”。选择ave最佳设计以使某个准则函数在先前分布上的期望值最小。我们将注意力集中在ave D_A最优性上,包括ave D最优性和ave c最优性,并针对这些最优性准则显示适当的等价定理,这为优化设计提供了必要条件。 Ave优化设计在例如进行二元或泊松响应的阶乘实验。将结果应用于阶乘实验,包括对照组实验和2 * 2实验。

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